


The Zhangzhou Development Zone Primary and Secondary School Maker Competition and the Artificial Intelligence and Robot Challenge were successfully held
Fujian Zhangzhou Development Zone recently held a primary and secondary school maker competition and artificial intelligence and robot challenge. A total of 168 teams and 209 students from primary and secondary schools in the district participated in the competition. With the theme of "Science Popularization Empowers 'Double Subtraction' and Science and Technology Innovation Builds Dreams for the Future", this competition aims to stimulate students' creativity and hands-on ability through technological innovation and lay the foundation for their future dreams.
The competition consists of five competitions: Line Patrol Challenge, Robot Competition, 3D Virtual Robot Challenge, Internet of Things Maker and Creative Programming. At the competition site, the contestants were focused and devoted, showing enthusiasm for exploration on their young faces. They overcame many difficulties through continuous debugging and exploration, bursting out "innovation sparks" in the cyclical competition system, and transforming creativity and imagination into individual players. Wonderful piece. After fierce competition, the champion, runner-up, and third runner-up were selected for each event. The teams with better results in each event will also represent Zhangzhou Development Zone in the 4th Zhangzhou Primary and Secondary School Maker Competition and Artificial Intelligence and Robot Challenge.
Internet of Things Maker Intelligent Design. Photo by Qiu Jianhua
Line Patrol Challenge. Photo by Hu Yinzi
Line Patrol Challenge. Photo by Qiu Jianhua
During the competition. Photo by Hu Yinzi
It is reported that this competition is co-sponsored by the Zhangzhou Development Zone Party Committee Propaganda Department (Civilization Office), Education and Health Bureau, and New Era Civilization Practice Center, and is hosted by Fujian Merchants Yungu Development Co., Ltd., Zhangzhou Yingxing Co-organized by Intelligent Technology Co., Ltd., it aims to build a good scientific and technological innovation competition platform for young people in Zhangzhou Development Zone, encourage young people to use competitions to promote learning and application, constantly improve their scientific literacy and practical abilities, and develop their innovative thinking potential. It is also Deeply implement the strategy of rejuvenating the country through science and education and implement the specific actions of the national “double reduction policy”. Next, Zhangzhou Development Zone will further create an atmosphere of science and education innovation, lead and promote the vigorous development of maker education in primary and secondary schools, and cultivate more good young people in the new era with innovative genes. (over)
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